An Effective Fingerprint Verification Technique

06/14/2010
by   Minakshi Gogoi, et al.
0

This paper presents an effective method for fingerprint verification based on a data mining technique called minutiae clustering and a graph-theoretic approach to analyze the process of fingerprint comparison to give a feature space representation of minutiae and to produce a lower bound on the number of detectably distinct fingerprints. The method also proving the invariance of each individual fingerprint by using both the topological behavior of the minutiae graph and also using a distance measure called Hausdorff distance.The method provides a graph based index generation mechanism of fingerprint biometric data. The self-organizing map neural network is also used for classifying the fingerprints.

READ FULL TEXT
research
11/20/2012

An Effective Method for Fingerprint Classification

This paper presents an effective method for fingerprint classification u...
research
11/19/2012

An Effective Fingerprint Classification and Search Method

This paper presents an effective fingerprint classification method desig...
research
10/03/2021

Fingerprint Matching using the Onion Peeling Approach and Turning Function

Fingerprint, as one of the most popular and robust biometric traits, can...
research
02/04/2019

Partial Fingerprint Detection Using Core Point Location

In Biometric identification, fingerprints based identification has been ...
research
07/10/2023

A Memristor-Inspired Computation for Epileptiform Signals in Spheroids

In this paper we present a memristor-inspired computational method for o...
research
07/31/2023

MRA-GNN: Minutiae Relation-Aware Model over Graph Neural Network for Fingerprint Embedding

Deep learning has achieved remarkable results in fingerprint embedding, ...
research
08/18/2022

Oh SSH-it, what's my fingerprint? A Large-Scale Analysis of SSH Host Key Fingerprint Verification Records in the DNS

The SSH protocol is commonly used to access remote systems on the Intern...

Please sign up or login with your details

Forgot password? Click here to reset